AI-Powered Analytics and Performance Engineering

External: Coursera Courses ↗ · Coursera

Open Course on External: Coursera

Free to audit · Opens on External: Coursera

AI-Powered Analytics and Performance Engineering

Coursera · Intermediate ·📊 Data Analytics & Business Intelligence ·3mo ago

Key Takeaways

This video teaches how to build AI-powered analytics pipelines on AWS using Amazon Bedrock, Lambda benchmarking, and Amazon Q, with a focus on integrating Rust for high-performance analytics and leveraging generative AI for code conversion.

Original Description

Learn to build AI-powered analytics pipelines on AWS using Amazon Bedrock, Lambda benchmarking, and Amazon Q for business intelligence. You will explore how Bedrock integrates with Rust for high-performance analytics, calling foundation model APIs from serverless architectures with token-level scaling. The course covers building Rust-Bedrock analytics pipelines that combine model invocation with data processing, and using generative AI to convert Python code to Rust for performance-critical workloads. You will construct intelligent code transformation pipelines that automate language migration, add performance instrumentation with GenAI, and build end-to-end AWS performance pipelines from instrumentation to analysis. The benchmarking module demonstrates real-world Lambda cost comparison between Python and Rust using synthetic Fortune 500 workloads, showing 10x cost differences at scale with three billion monthly invocations. You will use SageMaker DataWrangler for analytics data preparation and explore energy efficiency considerations for AI workloads. The Amazon Q module covers transforming raw data into living actionable insights through automatic anomaly detection, natural language processing that converts questions into SQL and Python queries, and CodeCatalyst dev environments for analytics projects. By completing this course, you will be able to build Rust-Bedrock analytics pipelines, benchmark Lambda performance for cost optimization, and use Amazon Q for AI-powered business intelligence.
Watch on External: Coursera ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Related Reads

📰
Understanding Data Mining: The Complete Beginner’s Guide for Data Science, Data Analytics, and…
Discover the basics of data mining and its applications in data science and analytics to uncover hidden patterns in large datasets
Medium · Data Science
📰
A County Welcomed 37 Data Centers Then Told Its Schools to Turn Off the Lights
A county that welcomed 37 data centers now faces unexpected consequences, highlighting the physical impact of cloud computing on local communities, making it crucial to consider sustainability and resource allocation in tech development
Medium · Programming
📰
The Data Science Career Isn’t Dying — It’s Being Redefined
The data science career is evolving due to AI and changing business needs, requiring professionals to adapt and acquire new skills
Medium · AI
📰
Presentation: Accelerating Netflix Data: A Cross-Team Journey from Offline to Online
Learn how Netflix accelerated its data processing by shifting from offline to online architectures using CloudStream, a repeatable capture, conversion, and deployment framework
InfoQ AI/ML
Up next
SQL Interview Question on Retention. #sql #dataanalytics #datascience
Rajeev Kanth | BEPEC
Watch →